Methodology and Statistics, Tilburg University, Tilburg, Netherlands.
Statistical Innovation Group, Advanced Analytics Centre, AstraZeneca, Cambridge, United Kingdom.
Res Synth Methods. 2019 Dec;10(4):515-527. doi: 10.1002/jrsm.1356. Epub 2019 Aug 14.
The Hartung-Knapp method for random-effects meta-analysis, that was also independently proposed by Sidik and Jonkman, is becoming advocated for general use. This method has previously been justified by taking all estimated variances as known and using a different pivotal quantity to the more conventional one when making inferences about the average effect. We provide a new conceptual framework for, and justification of, the Hartung-Knapp method. Specifically, we show that inferences from fitted random-effects models, using both the conventional and the Hartung-Knapp method, are equivalent to those from closely related intercept only weighted least squares regression models. This observation provides a new link between Hartung and Knapp's methodology for meta-analysis and standard linear models, where it can be seen that the Hartung-Knapp method can be justified by a linear model that makes a slightly weaker assumption than taking all variances as known. This provides intuition for why the Hartung-Knapp method has been found to perform better than the conventional one in simulation studies. Furthermore, our new findings give more credence to ad hoc adjustments of confidence intervals from the Hartung-Knapp method that ensure these are at least as wide as more conventional confidence intervals. The conceptual basis for the Hartung-Knapp method that we present here should replace the established one because it more clearly illustrates the potential benefit of using it.
哈特恩-纳普方法(Hartung-Knapp method)用于随机效应荟萃分析,也是由西迪克(Sidik)和琼克曼(Jonkman)独立提出的,正逐渐被提倡用于一般用途。该方法通过将所有估计方差视为已知,并在对平均效应进行推断时使用不同于传统方法的关键数量,从而得到了先前的合理性证明。我们为哈特恩-纳普方法提供了一个新的概念框架和合理性证明。具体来说,我们表明,使用传统方法和哈特恩-纳普方法从拟合的随机效应模型中进行推断,与从紧密相关的仅截距加权最小二乘回归模型中进行推断是等效的。这一观察结果为哈特恩-纳普荟萃分析方法与标准线性模型之间的联系提供了新的视角,从中可以看出,哈特恩-纳普方法可以通过一个稍微较弱的假设的线性模型得到证明,该假设是将所有方差视为已知。这为为什么在模拟研究中发现哈特恩-纳普方法比传统方法表现更好提供了直觉。此外,我们的新发现为哈特恩-纳普方法的置信区间的特殊调整提供了更多依据,以确保这些置信区间至少与更传统的置信区间一样宽。我们在这里提出的哈特恩-纳普方法的概念基础应该取代现有的基础,因为它更清楚地说明了使用它的潜在好处。